FrozenLake-v1-4x4 q-learning reinforcement-learning custom-implementation

Q-Learning Agent playing1 FrozenLake-v1

This is a trained model of a Q-Learning agent playing FrozenLake-v1 .

Usage


model = load_from_hub(repo_id="kinkpunk/q-FrozenLake-v1-custom-map-Slippery-edition",
                      filename="q-learning.pkl")

# Don't forget to change additional attributes
# when you create environment using 4x4 map
env = gym.make('FrozenLake-v1',
                desc=["SFFF", "FHHF", "FFHF", "HFFG"],
                is_slippery=True)

Training parameters

# Training parameters
n_training_episodes = 105000  # Total training episodes
learning_rate = 0.8          # Learning rate

# Evaluation parameters
n_eval_episodes = 100        # Total number of test episodes

# Environment parameters
env_id = "FrozenLake-v1"     # Name of the environment
max_steps = 99               # Max steps per episode
gamma = 0.98                 # Discounting rate
eval_seed = []               # The evaluation seed of the environment

# Exploration parameters
max_epsilon = 0.99            # Exploration probability at start
min_epsilon = 0.02            # Minimum exploration probability 
decay_rate = 0.009            # Exponential decay rate for exploration prob